View source: R/efficiency_algorithms.R
| SeqMOD | R Documentation |
Selects the choice set that minimizes the DB-error when added to an initial design, given (updated) parameter values.
SeqMOD( des = NULL, cand.set, n.alts, par.draws, prior.covar, alt.cte = NULL, no.choice = NULL, weights = NULL, parallel = TRUE, reduce = TRUE, allow.rep = FALSE )
des |
A design matrix in which each row is a profile. If alternative
specific constants are present, those should be included as the first
column(s) of the design. Can be generated with |
cand.set |
A numeric matrix in which each row is a possible profile. The
|
n.alts |
Numeric value indicating the number of alternatives per choice set. |
par.draws |
A matrix or a list, depending on |
prior.covar |
Covariance matrix of the prior distribution. |
alt.cte |
A binary vector indicating for each alternative whether an
alternative specific constant is desired. The default is |
no.choice |
An integer indicating the no choice alternative. The default
is |
weights |
A vector containing the weights of the draws. Default is
|
parallel |
Logical value indicating whether computations should be done over multiple cores. |
reduce |
Logical value indicating whether the candidate set should be reduced or not. |
allow.rep |
Logical value indicating whether repeated choice sets are allowed in the design. |
This algorithm is ideally used in an adaptive context. The algorithm will select the next DB-efficient choice set given parameter values and possible previously generated choice sets. In an adaptive context these parameter values are updated after each observed response.
Previously generated choice sets, which together form an initial design, can
be provided in des. When no design is provided, the algorithm will
select te most efficient choice set based on the fisher information of the
prior covariance matrix prior.covar.
If alt.cte = NULL, par.draws should be a matrix in which each
row is a sample from the multivariate parameter distribution. In case that
alt.cte is not NULL, a list containing two matrices should be
provided to par.draws. The first matrix containing the parameter draws
for the alternative specific parameters. The second matrix containing the
draws for the rest of the parameters.
The list of potential choice sets are created using
combn. If reduce is TRUE,
allow.rep = FALSE and vice versa. Furthermore, the list of
potential choice sets will be screaned in order to select only those choice
sets with a unique information matrix. If no alternative specific constants are used,
reduce should always be TRUE. When alternative specific
constants are used reduce can be TRUE so that the algorithm
will be faster, but the combinations of constants and profiles will not be
evaluated exhaustively.
The weights argument can be used when the par.draws have
weights. This is for example the case when parameter values are updated using
ImpsampMNL.
When parallel is TRUE, detectCores will
be used to decide upon the number of available cores. That number minus 1
cores will be used to search for the optimal choice set. For small problems
(6 parameters), parallel = TRUE can be slower. For larger problems the
computation time will decrease significantly.
Note: this function is more stable than SeqCEA, but
it takes more time to get the output. This happens because this function
makes an exhaustive search to get the choice set, whereas
SeqCEA makes a random search.
set |
A matrix representing a DB efficient choice set. |
error |
A numeric value indicating the DB-error of the whole design. |
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# DB efficient choice set, given a design and parameter draws.
# Candidate profiles
cs <- Profiles(lvls = c(3, 3, 3), coding = c("D", "D", "D"))
m <- c(0.3, 0.2, -0.3, -0.2, 1.1, 2.4) # mean (total = 6 parameters).
pc <- diag(length(m)) # covariance matrix
set.seed(123)
sample <- MASS::mvrnorm(n = 10, mu = m, Sigma = pc)
# Initial design.
des <- example_design
# Efficient choice set to add.
SeqMOD(des = des, cand.set = cs, n.alts = 2, par.draws = sample,
prior.covar = pc, parallel = FALSE)
# DB efficient choice set, given parameter draws.
# with alternative specific constants
des <- example_design2
cs <- Profiles(lvls = c(3, 3, 3), coding = c("D", "D", "D"))
ac <- c(1, 1, 0) # Alternative specific constants.
m <- c(0.3, 0.2, -0.3, -0.2, 1.1, 2.4, 1.8, 1.2) # mean
pc <- diag(length(m)) # covariance matrix
pos <- MASS::mvrnorm(n = 10, mu = m, Sigma = pc)
sample <- list(pos[ , 1:2], pos[ , 3:8])
# Efficient choice set.
SeqMOD(des = des, cand.set = cs, n.alts = 3, par.draws = sample, alt.cte = ac,
prior.covar = pc, parallel = FALSE)
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